testing subscripting
This commit is contained in:
@@ -47,14 +47,10 @@ Which company has the “best” algorithm?
|
||||
|
||||
In this course we will focus on the intuition of order notation. This topic will be covered again, in more depth, in
|
||||
later computer science courses.
|
||||
- Definition: Algorithm A is order f(n) — denoted O(f(n)) — if constants k and n0 exist such that A requires
|
||||
no more than k ∗ f(n) time units (operations) to solve a problem of size n ≥ n0.
|
||||
- Definition: Algorithm A is order f(n) — denoted O(f(n)) — if constants k and n<sup>0</sup> exist such that A requires no more than k * f(n) time units (operations) to solve a problem of size n ≥ n<sup>0</sup>.
|
||||
- For example, algorithms requiring 3n + 2, 5n − 3, and 14 + 17n operations are all O(n).
|
||||
This is because we can select values for k and n0 such that the definition above holds. (What values?)
|
||||
Likewise, algorithms requiring n 2/10 + 15n − 3 and 10000 + 35n
|
||||
2 are all O(n
|
||||
2
|
||||
).
|
||||
Likewise, algorithms requiring n<sup>2</sup>/10 + 15n − 3 and 10000 + 35n<sup>2</sup> are all O(n<sup>2</sup>).
|
||||
- Intuitively, we determine the order by finding the asymptotically dominant term (function of n) and throwing
|
||||
out the leading constant. This term could involve logarithmic or exponential functions of n. Implications for
|
||||
analysis:
|
||||
@@ -71,7 +67,7 @@ quadratic root.
|
||||
- O(n), a.k.a. LINEAR. e.g., sum up a list.
|
||||
- O(n log n), e.g., sorting.
|
||||
- O(n<sup>2</sup>), O(n<sup>3</sup>), O(n<sup>k</sup>), a.k.a. POLYNOMIAL. e.g., find closest pair of points.
|
||||
- O(2n), O(kn), a.k.a. EXPONENTIAL. e.g., Fibonacci, playing chess.
|
||||
- O(2<sup>n</sup>), O(k<sup>n</sup>), a.k.a. EXPONENTIAL. e.g., Fibonacci, playing chess.
|
||||
|
||||
## 7.6 Exercise: A Slightly Harder Example
|
||||
|
||||
|
||||
Reference in New Issue
Block a user